Layered-Garment Net: Generating Multiple Implicit Garment Layers from a Single Image

Alakh Aggarwal, Ji-kai Wang, S. Hogue, Saifeng Ni, M. Budagavi, Xiaohu Guo
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引用次数: 4

Abstract

Recent research works have focused on generating human models and garments from their 2D images. However, state-of-the-art researches focus either on only a single layer of the garment on a human model or on generating multiple garment layers without any guarantee of the intersection-free geometric relationship between them. In reality, people wear multiple layers of garments in their daily life, where an inner layer of garment could be partially covered by an outer one. In this paper, we try to address this multi-layer modeling problem and propose the Layered-Garment Net (LGN) that is capable of generating intersection-free multiple layers of garments defined by implicit function fields over the body surface, given the person's near front-view image. With a special design of garment indication fields (GIF), we can enforce an implicit covering relationship between the signed distance fields (SDF) of different layers to avoid self-intersections among different garment surfaces and the human body. Experiments demonstrate the strength of our proposed LGN framework in generating multi-layer garments as compared to state-of-the-art methods. To the best of our knowledge, LGN is the first research work to generate intersection-free multiple layers of garments on the human body from a single image.
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分层服装网:从单个图像生成多个隐式服装层
最近的研究工作集中在从2D图像生成人体模型和服装上。然而,目前的研究主要集中在人体模型上的单一服装层,或者在没有任何保证它们之间无相交的几何关系的情况下生成多个服装层。在现实生活中,人们在日常生活中穿着多层衣服,其中一层衣服可能被一层衣服部分覆盖。在本文中,我们试图解决这个多层建模问题,并提出了分层服装网络(LGN),该网络能够生成由人体表面上的隐式函数场定义的无相交多层服装,给定人的近前视图像。通过特殊的服装指示场(GIF)设计,我们可以在不同层的标志距离场(SDF)之间实现隐式的覆盖关系,避免不同服装表面与人体之间的自相交。与最先进的方法相比,实验证明了我们提出的LGN框架在生成多层服装方面的优势。据我们所知,LGN是第一个从单幅图像中生成人体无交叉多层服装的研究工作。
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